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Intelligent Incident Response Systems Using Machine Learning

[journal article]

Olobo, Neibo Augustine
Ayuba, Waliu Adebayo
Obi-Obuoha, Abiamamela
Iyobosa, Izevbigie Hope
Adebayo, Aderemi Ibraheem
Jude, Ishiwu Ifeanyichukwu
Ifechukwu, Chioma Jessica

Abstract

Machine learning (ML) is revolutionising cybersecurity by enhancing the ability to predict, detect, and respond to cyber threats. By leveraging advanced algorithms, ML systems can analyse vast datasets in real-time, identify patterns, and automate responses, addressing the challenges of increasingly... view more

Machine learning (ML) is revolutionising cybersecurity by enhancing the ability to predict, detect, and respond to cyber threats. By leveraging advanced algorithms, ML systems can analyse vast datasets in real-time, identify patterns, and automate responses, addressing the challenges of increasingly sophisticated cyberattacks. This paper explores the transformative impact of machine learning in cybersecurity, highlighting key tasks such as classification, anomaly detection, and natural language processing. It also discusses future research directions, including explainable AI, adversarial machine learning, federated learning, and privacy-preserving techniques. The cybersecurity community can develop more robust and adaptive defences by focusing on these innovative areas, ensuring a safer digital environment. Integrating machine learning into cybersecurity practices is crucial for navigating the evolving threat landscape and maintaining trust in digital systems.... view less

Keywords
computer aided learning; education; threat; data protection; automation

Classification
Sociology of Science, Sociology of Technology, Research on Science and Technology

Free Keywords
Intelligent Incident Response; Machine Learning; Threat Detection; Automated Response; Predictive Analytics

Document language
English

Publication Year
2024

Page/Pages
p. 5019-5032

Journal
Path of Science, 10 (2024) 12

ISSN
2413-9009

Status
Published Version; peer reviewed

Licence
Creative Commons - Attribution 4.0


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Home  |  Legal notices  |  Operational concept  |  Privacy policy
© 2007 - 2025 Social Science Open Access Repository (SSOAR).
Based on DSpace, Copyright (c) 2002-2022, DuraSpace. All rights reserved.